Aberrant respondents are common but yet extremely detrimental to the quality of social surveys or questionnaires. Recently, factor mixture models (FMMs) have been employed to identify individuals providing deceptive or careless responses. We propose a comprehensive FMM for continuous outcomes that combines confirmatory and exploratory factor models to classify both the nonaberrant and aberrant respondents. The flexibility of the proposed classification model allows for the identification of two of the most common aberrant response styles, namely faking and careless responding. We validated our approach by means of two simulations and two case studies. The results indicate the effectiveness of the proposed model in dealing with aberrant responses in social and behavioural surveys.
A novel CFA + EFA model to detect aberrant respondents
Finos, Livio;Calcagni', Antonio
2024
Abstract
Aberrant respondents are common but yet extremely detrimental to the quality of social surveys or questionnaires. Recently, factor mixture models (FMMs) have been employed to identify individuals providing deceptive or careless responses. We propose a comprehensive FMM for continuous outcomes that combines confirmatory and exploratory factor models to classify both the nonaberrant and aberrant respondents. The flexibility of the proposed classification model allows for the identification of two of the most common aberrant response styles, namely faking and careless responding. We validated our approach by means of two simulations and two case studies. The results indicate the effectiveness of the proposed model in dealing with aberrant responses in social and behavioural surveys.| File | Dimensione | Formato | |
|---|---|---|---|
| first_online.pdf Accesso riservato 
											Tipologia:
											Published (Publisher's Version of Record)
										 
											Licenza:
											
											
												Accesso privato - non pubblico
												
												
												
											
										 
										Dimensione
										1.21 MB
									 
										Formato
										Adobe PDF
									 | 1.21 MB | Adobe PDF | Visualizza/Apri Richiedi una copia | 
| 2311.15988v2.pdf accesso aperto 
											Tipologia:
											Preprint (AM - Author's Manuscript - submitted)
										 
											Licenza:
											
											
												Altro
												
												
												
											
										 
										Dimensione
										469.05 kB
									 
										Formato
										Adobe PDF
									 | 469.05 kB | Adobe PDF | Visualizza/Apri | 
Pubblicazioni consigliate
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.




